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引用次数: 161

摘要

对于大词汇量和连续语音识别,基于子词单元的方法是一种可行的替代方法。对于准备大量子词单元,自动分词比手动分词更可取,因为它大大减少了与模板生成相关的工作,并提供了更一致的结果。本文讨论了语音自动切分的几种方法。描述了三种不同的方法,一种基于模板匹配,一种基于检测语音单位边界处发生的频谱变化,一种基于约束聚类矢量量化方法。对自动分割方法的性能进行了评价。
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On the automatic segmentation of speech signals
For large vocabulary and continuous speech recognition, the sub-word-unit-based approach is a viable alternative to the whole-word-unit-based approach. For preparing a large inventory of subword units, an automatic segmentation is preferrable to manual segmentation as it substantially reduces the work associated with the generation of templates and gives more consistent results. In this paper we discuss some methods for automatically segmenting speech into phonetic units. Three different approaches are described, one based on template matching, one based on detecting the spectral changes that occur at the boundaries between phonetic units and one based on a constrained-clustering vector quantization approach. An evaluation of the performance of the automatic segmentation methods is given.
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